Enhancing ab initio diffusion calculations in materials through Gaussian process regression
Seyyedfaridoddin Fattahpour, Sara Kadkhodaei

TL;DR
This paper introduces a Gaussian process regression-based acceleration for saddle point searches in materials, significantly reducing computational evaluations in diffusion calculations.
Contribution
It presents a novel GPR-accelerated dimer method with multi-task learning and translation-hop sampling to improve efficiency in saddle point detection.
Findings
GPR surrogate improves search speed for diffusion saddle points.
Multi-task learning enhances GPR model accuracy.
Method reduces evaluations to a fraction of conventional approaches.
Abstract
Saddle point search schemes are widely used to identify the transition state of different processes, like chemical reactions, surface and bulk diffusion, surface adsorption, and many more. In solid-state materials with relatively large numbers of atoms, the minimum mode following schemes such as dimer are commonly used because they alleviate the calculation of the Hessian on the high-dimensional potential energy surface. Here, we show that the dimer search can be further accelerated by leveraging Gaussian process regression (GPR). The GPR serves as a surrogate model to feed the dimer with the required energy and force input. We test the GPR- accelerated dimer method for predicting the diffusion coefficient of vacancy-mediated self-diffusion in bcc molybdenum and sulfur diffusion in hexagonal molybdenum disulfide. We use a multi-task learning approach that utilizes a shared covariance…
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Taxonomy
TopicsMachine Learning in Materials Science · Fuel Cells and Related Materials
